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SHARC: Reference point driven Spherical Harmonic Representation for Complex Shapes

About

We propose SHARC, a novel framework that synthesizes arbitrary, genus-agnostic shapes by means of a collection of Spherical Harmonic (SH) representations of distance fields. These distance fields are anchored at optimally placed reference points in the interior volume of the surface in a way that maximizes learning of the finer details of the surface. To achieve this, we employ a cost function that jointly maximizes sparsity and centrality in terms of positioning, as well as visibility of the surface from their location. For each selected reference point, we sample the visible distance field to the surface geometry via ray-casting and compute the SH coefficients using the Fast Spherical Harmonic Transform (FSHT). To enhance geometric fidelity, we apply a configurable low-pass filter to the coefficients and refine the output using a local consistency constraint based on proximity. Evaluation of SHARC against state-of-the-art methods demonstrates that the proposed method outperforms existing approaches in both reconstruction accuracy and time efficiency without sacrificing model parsimony. The source code is available at https://github.com/POSE-Lab/SHARC.

Panagiotis Sapoutzoglou, George Terzakis, Maria Pateraki• 2026

Related benchmarks

TaskDatasetResultRank
Shape ReconstructionShapeNet Chair (test)--
7
Shape ReconstructionShapeNet Sofa (test)--
7
3D Shape ReconstructionShapeNet Airplane (test)
Directed Chamfer Distance (dCD)0.23
4
3D Shape ReconstructionShapeNet Lamp (test)
dCD0.28
4
Shape ReconstructionPSB
L1 Chamfer Distance (dCD)0.28
4
Shape ReconstructionStanford
L1 Chamfer Distance (dCD)0.33
4
Shape ReconstructionThingi10K
L1 Chamfer Distance0.39
4
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